基于感知反馈的皮质神经假肢视觉贝叶斯优化。

IF 3.8
Burcu Küçükoğlu, Leili Soo, David Leeftink, Fabrizio Grani, Cristina Soto Sanchez, Umut Güçlü, Marcel van Gerven, Eduardo Fernandez
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引用次数: 0

摘要

目的:皮层神经假体视觉的挑战是确定最佳的、安全的刺激模式,以唤起盲人所需的光感知(“光幻视”)。临床研究通过患者对所提供的刺激方案的描述来深入了解幻视的感知特征。然而,多电极刺激的巨大参数空间使得难以确定导致良好感知的光幻视的刺激的最优性。为了获得良好的感知效果,需要对电刺激的参数空间进行系统搜索。贝叶斯优化(BO)是一种有效寻找最优参数的框架。利用患者的感知反馈,可以建立基于迭代生成的刺激方案的患者反应模型,以最大限度地提高感知质量。在患者的视觉皮层植入96通道微电极阵列,在两个单独的实验中通过BO和随机生成(RG)迭代地呈现刺激方案。鉴于标准BO方法不能很好地扩展到有十多个输入的问题,我们使用基于信任区域的BO优化了一组40个电极电流。该方案确定了要刺激的电极和多少电流(0-50 μA),总电流限制为500 μA。患者用李克特量表对每种刺激的感知质量打分,其中7表示最高质量,0表示没有感知。& # xD;主要结果。与RG实验相比,BO的患者评分逐渐向更高的值收敛。BO逐渐产生了总电流更高的方案,这符合患者对更亮的光幻灯所带来的更高电流的偏好。先前观察到的有效产生磷光烯感知的电极被BO更多地选择,并且具有更高的电流分配。 ;这项研究证明了BO在基于患者反馈的最优刺激方案上的强大功能,为临床研究提供了有效的刺激参数搜索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian optimization of cortical neuroprosthetic vision using perceptual feedback.

Objective.The challenge in cortical neuroprosthetic vision is determining the optimal, safe stimulation patterns to evoke the desired light perceptions ('phosphenes') in blind individuals. Clinical studies gain insights into the perceptual characteristics of phosphenes through patient descriptions on provided stimulation protocols. However, the huge parameter space for multi-electrode stimulation makes it difficult to identify the optimality of the stimulation that lead to well-perceived phosphenes. A systematic search in the parameter space of the electrical stimulation is needed to achieve good perception. Bayesian optimization (BO) is a framework for finding optimal parameters efficiently. Using patient's perceptual feedback, a model of patient response based on iteratively generated stimulation protocols can be built to maximize perception quality.Approach.A patient implanted with an intracortical 96-channel microelectrode array in their visual cortex was iteratively presented with stimulation protocols, generated via BO vs. random generation (RG) in two separate experiments. Whereas standard BO methods do not scale well to problems with over a dozen inputs, we optimize a set of 40 electrode currents using trust region-based BO. The protocols determine the electrodes to stimulate and with how much current (0-50 µA), on a total current limit of 500 µA. The patient rated each stimulation's perceptual quality on a Likert scale, where 7 indicated the highest quality and 0 no perception.Main results.The patient ratings gradually converged on higher values with BO, compared to the RG experiment. BO gradually generated protocols with higher total current, in line with the patient preference for higher currents due to brighter phosphenes. Electrodes previously observed as effective in producing phosphene perception were chosen more by BO also with higher current allocation.Significance.This study demonstrates the power of BO in converging to optimal stimulation protocols based on patient feedback, providing an efficient search for stimulation parameters for clinical studies.

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